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CS621: Introduction to Artificial
Intelligence
Pushpak Bhattacharyya
CSE Dept.,
IIT Bombay
Lecture–2: Modeling Human Reasoning:
Fuzzy Logic
26th July 2010
Basic Facts
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Faculty instructor: Dr. Pushpak Bhattacharyya
(www.cse.iitb.ac.in/~pb)
TAs: Subhajit and Bhuban {subbo,bmseth}@cse
Course home page
 www.cse.iitb.ac.in/~cs621-2010
Venue: S9, old CSE
1 hour lectures 3 times a week: Mon-9.30, Tue-10.30, Thu11.30 (slot 2)
Disciplines which form the core of AI- inner circle
Fields which draw from these disciplines- outer circle.
Robotics
NLP
Expert
Systems
Search,
Reasoning,
Learning
Planning
Computer
Vision
Topics to be covered (1/2)
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Search
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General Graph Search, A*, Admissibility, Monotonicity
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Iterative Deepening, α-β pruning, Application in game playing
Logic
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Formal System, axioms, inference rules, completeness, soundness and
consistency
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Propositional Calculus, Predicate Calculus, Fuzzy Logic, Description
Logic, Web Ontology Language
Knowledge Representation
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Semantic Net, Frame, Script, Conceptual Dependency
Machine Learning
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Decision Trees, Neural Networks, Support Vector Machines, Self
Organization or Unsupervised Learning
Topics to be covered (2/2)
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Evolutionary Computation
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Genetic Algorithm, Swarm Intelligence
Probabilistic Methods
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Hidden Markov Model, Maximum Entropy Markov Model,
Conditional Random Field
IR and AI
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Modeling User Intention, Ranking of Documents, Query Expansion,
Personalization, User Click Study
Planning
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Deterministic Planning, Stochastic Methods
Man and Machine
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Natural Language Processing, Computer Vision, Expert Systems
Philosophical Issues
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Is AI possible, Cognition, AI and Rationality, Computability and AI,
Creativity
Allied Disciplines
Philosophy
Maths
Economics
Knowledge Rep., Logic, Foundation of
AI (is AI possible?)
Search, Analysis of search algos, logic
Psychology
Expert Systems, Decision Theory,
Principles of Rational Behavior
Behavioristic insights into AI programs
Brain Science
Learning, Neural Nets
Physics
Learning, Information Theory & AI,
Entropy, Robotics
Computer Sc. & Engg. Systems for AI
Resources
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Main Text:
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Other References:
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Principles of AI - Nilsson
AI - Rich & Knight
Journals
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Artificial Intelligence: A Modern Approach by Russell & Norvik,
Pearson, 2003.
AI, AI Magazine, IEEE Expert,
Area Specific Journals e.g, Computational Linguistics
Conferences
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IJCAI, AAAI
Positively attend lectures!
Modeling Human Reasoning
Fuzzy Logic
Alternatives to fuzzy logic model
human reasoning (1/2)
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Non-numerical
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Non monotonic Logic
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Modal Logic
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Negation by failure (“innocent unless proven
guilty”)
Abduction (PQ AND Q gives P)
New operators beyond AND, OR, IMPLIES,
Quantification etc.
Naïve Physics
Abduction Example
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If
there is rain (P)
Then
there will be no picnic (Q)
Abductive reasoning:
Observation: There was no picnic(Q)
Conclude : There was rain(P); in absence
of any other evidence
Alternatives to fuzzy logic model
human reasoning (2/2)
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Numerical
Fuzzy Logic
 Probability Theory
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Bayesian Decision Theory
Possibility Theory
 Uncertainty Factor based on
Dempster Shafer Evidence
Theory (e.g. yellow_eyesjaundice; 0.3)
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Fuzzy Logic tries to capture the
human ability of reasoning with
imprecise information
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Works with imprecise statements such as:
In a process control situation, “If the
temperature is moderate and the pressure is
high, then turn the knob slightly right”
The rules have “Linguistic Variables”, typically
adjectives qualified by adverbs (adverbs are
hedges).
Theory of Fuzzy Sets
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Intimate connection between logic and set theory.
Given any set ‘S’ and an element ‘e’, there is a very
natural predicate, μs(e) called as the belongingness
predicate.
The predicate is such that,
μs(e) = 1,
iff e ∈ S
= 0,
otherwise
For example, S = {1, 2, 3, 4}, μs(1) = 1 and μs(5) =
0
A predicate P(x) also defines a set naturally.
S = {x | P(x) is true}
For example, even(x) defines S = {x | x is even}
Fuzzy Set Theory (contd.)
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Fuzzy set theory starts by questioning the fundamental
assumptions of set theory viz., the belongingness
predicate, μ, value is 0 or 1.
Instead in Fuzzy theory it is assumed that,
μs(e) = [0, 1]
Fuzzy set theory is a generalization of classical set
theory aka called Crisp Set Theory.
In real life, belongingness is a fuzzy concept.
Example: Let, T = “tallness”
μT (height=6.0ft ) = 1.0
μT (height=3.5ft) = 0.2
An individual with height 3.5ft is “tall” with a degree
0.2
Representation of Fuzzy sets
Let U = {x1,x2,…..,xn}
|U| = n
The various sets composed of elements from U are presented
as points on and inside the n-dimensional hypercube. The crisp
μA(x1)=0.3
sets are the corners of the hypercube.
μA(x2)=0.4
(0,1)
U={x1,x2}
(1,1)
x2
(x1,x2)
A(0.3,0.4)
x2
(1,0)
(0,0)
Φ
x1
x1
A fuzzy set A is represented by a point in the n-dimensional
space as the point {μA(x1), μA(x2),……μA(xn)}
Degree of fuzziness
The centre of the hypercube is the most fuzzy
set. Fuzziness decreases as one nears the
corners
Measure of fuzziness
Called the entropy of a fuzzy set
Fuzzy set
Farthest corner
E ( S )  d ( S , nearest ) / d ( S , farthest)
Entropy
Nearest corner
(0,1)
(1,1)
x2
(0.5,0.5)
A
d(A, nearest)
(0,0)
(1,0)
x1
d(A, farthest)
Definition
Distance between two fuzzy sets
n
d ( S1 , S 2 )   |  s1 ( xi )  s2 ( xi ) |
i 1
L1 - norm
Let C = fuzzy set represented by the centre point
d(c,nearest) = |0.5-1.0| + |0.5 – 0.0|
=1
= d(C,farthest)
=> E(C) = 1
Definition
Cardinality of a fuzzy set
n
m( s )   s ( xi ) (generalization of cardinality of
i 1
classical sets)
Union, Intersection, complementation, subset hood
 s s ( x)  max(  s ( x),  s ( x)), x U
1
2
1
2
 s s ( x)  min(  s ( x),  s ( x)), x U
1
2
1
 s ( x)  1   s ( x)
c
2
Example of Operations on
Fuzzy Set
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Let us define the following:
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Universe U={X1 ,X2 ,X3}
Fuzzy sets
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A={0.2/X1 , 0.7/X2 , 0.6/X3} and
B={0.7/X1 ,0.3/X2 ,0.5/X3}
Then Cardinality of A and B are computed as follows:
Cardinality of A=|A|=0.2+0.7+0.6=1.5
Cardinality of B=|B|=0.7+0.3+0.5=1.5
While distance between A and B
d(A,B)=|0.2-0.7)+|0.7-0.3|+|0.6-0.5|=1.0
What does the cardinality of a fuzzy set mean? In crisp sets it
means the number of elements in the set.
Example of Operations on Fuzzy Set
(cntd.)
Universe U={X1 ,X2 ,X3}
Fuzzy sets A={0.2/X1 ,0.7/X2 ,0.6/X3} and B={0.7/X1 ,0.3/X2
,0.5/X3}
A U B= {0.7/X1, 0.7/X2, 0.6/X3}
A ∩ B= {0.2/X1, 0.3/X2, 0.5/X3}
Ac = {0.8/X1, 0.3/X2, 0.4/X3}
Laws of Set Theory
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The laws of Crisp set theory also holds for fuzzy set
theory (verify them)
These laws are listed below:
–
Commutativity:
Associativity:
Distributivity:
–
De Morgan’s Law:
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AUB=BUA
A U ( B U C )=( A U B ) U C
A U ( B ∩ C )=( A ∩ C ) U ( B ∩ C)
A ∩ ( B U C)=( A U C) ∩( B U C)
(A U B) C= AC ∩ BC
(A ∩ B) C= AC U BC
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